Cropping System Diversity Effects on Nutrient Discharge, Soil Erosion

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Cropping System Diversity Effects on Nutrient Discharge, Soil Erosion, and Agronomic Performance Natalie Dawn Hunt, Jason D. Hill, and Matt Liebman Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b02193 • Publication Date (Web): 04 Jan 2019 Downloaded from http://pubs.acs.org on January 5, 2019

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Cropping System Diversity Effects on Nutrient Discharge, Soil Erosion, and Agronomic

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Performance

3 Natalie D. Hunt*‡, Jason D. Hill‡, Matt Liebman†

4 5

‡Department

6 7 8

of Bioproducts and Biosystems Engineering, University of Minnesota, St. Paul, MN 55108, [email protected], [email protected]

†Department

of Agronomy, Iowa State University, Ames, IA 50011, [email protected] Corresponding author email: [email protected]

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Abstract Nutrient, herbicide, and sediment loading from agricultural fields cause environmental

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and economic damage. Nutrient leaching and runoff pollution can lead to eutrophication and

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impaired drinking water resources, while soil erosion reduces water quality and agronomic

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productivity. Increased cropping system diversification has been proposed to address these

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problems. We used the ArcSWAT model and long-term Iowa field experimental

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measurements to estimate eutrophication and erosion impacts of three crop rotation systems

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under two weed management regimes. Rotations were comprised of 2-year corn-soybean, 3-

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year corn-soybean-oat/clover, and 4-year corn-soybean-oat/alfalfa-alfalfa systems. All were

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managed with conventional or low herbicide applications. Total N and P runoff losses were up

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to 39% and 30% lower, respectively, in the more diverse systems than the 2-year corn-soybean

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system, but NO3--N leaching losses were unaffected by cropping system. Diversification

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reduced erosion losses up to 60%. The 3- and 4-year systems maintained or increased crop

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yields and net returns relative to the 2-year conventional system. Reductions in herbicide use

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intensity generally did not affect nutrient and sediment losses, nor crop yields and profitability.

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These results indicate that diversifying the corn-soybean rotation that dominates the central

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U.S. could reduce water nutrient contamination and soil erosion, while maintaining farm

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productivity and profitability.

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TOC Art

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Introduction A significant agricultural challenge of the 21st century is providing sufficient food,

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feed, and fuel for an increasing global population without degrading the planet’s natural

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resources and productive capacity.1–3 Consequently, balancing crop productivity, profitability,

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and maintenance or improvement of soil and water quality and biodiversity will be critical to

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meeting these goals.4,5

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Current levels of agricultural productivity are closely linked to agrichemical use.

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Following World War II, lower commercial fertilizer and herbicide costs from improved

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manufacturing technologies and infrastructure allowed farmers to replace traditional methods

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of soil and weed management, including crop rotation, cultivation, and manuring strategies,

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with simplified cropping systems and synthetic fertilizers and herbicides. Between 1960 and

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1990, global synthetic nitrogen use increased 700%, and phosphorus use increased more than

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300%.6 From 1952 to 2008, application of herbicides to hectares planted with corn in the US

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rose from 10% to >90%.7

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While these changes have led to large increases in crop productivity, including a

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doubling of global cereal production and a threefold increase in production of vegetable-based

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proteins since the early 1960s, they have also been characterized by increased expenditures on

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purchased inputs and increased nonpoint pollution of surface and groundwater systems.2,8–10

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Surface water eutrophication drives increased algae growth and leads to reductions in

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dissolved oxygen content in the water column due to algal decomposition, which can result in

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reductions of populations of other aquatic organisms.11 Nitrate leaching into groundwater

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systems can also increase costs of drinking water treatment, and can pose threats to human

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health, particularly for infants.12 Phosphorus, another driver of eutrophication, can lead to algal

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blooms of cyanobacteria, resulting in harm to human and animal health.6

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Excess nutrients entering water bodies by agricultural runoff and leaching are often the

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result of an overabundance or asynchrony of applied nutrients between application and crop

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uptake. When more nutrients are applied than are taken up by crops, soil nutrient enrichment

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occurs, rendering a field susceptible to runoff or leaching losses under certain precipitation

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conditions.9

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One approach for reducing the environmental impacts of conventional cropping

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systems in the U.S. Midwest is cropping system diversification. Increasing the length of corn-

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and soybean-based rotation systems with forage crops and small grains and applying organic

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matter amendments can boost crop yields13–15 while reducing soil erosion16 and risks of

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eutrophication due to runoff and leaching.17–20 Increased crop rotation diversity with

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concomitant increases in the diversity of associated management practices can also disrupt

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weed life cycles, thereby reducing weed survival, reproductive output, and biomass

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production, and enhancing weed suppression with lower reliance on herbicides.21–24 As

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populations of a rising number of weed species evolve resistance to a wide range of herbicides,

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cropping system diversification has been identified as a key resistance management strategy.25

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Incorporating a reduced herbicide application regime into an increasingly diverse cropping

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system may not only suppress weeds effectively, but also significantly reduce toxicity impacts

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to freshwater bodies in agricultural landscapes.23,24

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Cropping system diversification is often linked to integration with livestock

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production. In integrated systems, grain concentrates and forages are fed to livestock and

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manure is used as a nutrient source for crops.26 In addition to reducing requirements for

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purchased fertilizers, the soil-related benefits of this practice include improvements in soil

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carbon storage and microbial biomass, soil physical structure, plant-available nitrogen, and

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infiltration and retention of water.27,28 Manure transfer between on-farm enterprises or

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neighboring farms provides an opportunity to integrate crop and livestock operations within a

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watershed, and can alleviate costs associated with manure storage, handling, and disposal.26

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The objective of this study is to extend previous findings by Davis et al.23 and Hunt et

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al.24 by estimating the potential eutrophication loading and erosion loss from a watershed

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under three crop rotation systems and two herbicide regimes. We used empirical data collected

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from 2008–2016 as well as modeling analyses to make the estimates. We predicted that soil

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erosion and nutrient losses would decrease as cropping system diversification increased. We

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also expected that a reduction in herbicide use intensity would have little or no impact on

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erosion and nutrient losses for the different rotation systems. Based on our previous work, we

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expected that the primary agronomic functions of crop productivity, weed suppression, and net

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returns to land and management would be sustained or enhanced under system diversification

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and largely unaffected by the herbicide regimes we assessed.

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Materials and Methods

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Experimental Design

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Empirical measurements were made at Iowa State University’s Marsden Farm, which

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is situated in Boone County, Iowa (42°01’N, 93°47’W). All soil types at the experimental site

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are Mollisols. The site does not have a sub-surface tile drainage system.

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Experimental treatments were established in 2002. Preceding set-up of the experiment, the site was used for corn and soybean production for at least 20 years using conventional

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management practices. Experiment plots were organized in a randomized complete block

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design, with four replicates of each crop phase of each rotation system present every year.

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Main plots, each 18 m × 85 m, comprised three different crop rotation systems. Starting in

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2008, each main plot was split into two herbicide regimes, each applied over 9 m × 85 m

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subplots, generating a 3 × 2 factorial set of treatments.24 Plots were managed with

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conventional farm machinery.

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Three crop rotation systems appropriate for the Midwest US were incorporated in this

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study: a 2-year corn and soybean rotation, and two more diverse systems: a 3-year corn-

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soybean-oat/red clover rotation and a 4-year corn-soybean-oat/alfalfa-alfalfa rotation. The 3-

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year rotation system consisted of planting oat with red clover following the soybean crop

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phase; oat grain and straw were harvested in mid-summer, oat stubble was mowed for weed

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control, and red clover grew in the stubble until it was incorporated with a moldboard plow in

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the late fall. The 4-year rotation system consisted of planting oat with alfalfa following the

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soybean crop phase; oat grain and straw were harvested in mid-summer, oat stubble was

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mowed once, and the alfalfa was left to grow into the fourth crop phase, when it was harvested

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three or four times, before being moldboard plowed in the late fall of the fourth year.20,23,24 The

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more diverse cropping systems were representative of integrated farms that incorporate

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livestock through forage production and manure recycling. Synthetic fertilizers were applied to

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corn in the 2-year system at conventional rates based on soil tests. Composted cattle manure

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was applied in the fall prior to the corn phase, and reduced rates of synthetic fertilizers were

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applied to corn in the 3- and 4-year rotations (Table 1).

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Alternative herbicide application regimes were applied to the corn and soybean crop phases within each rotation system. We implemented a conventional treatment (CONV)

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comprising broadcast applications of pre- and post-emergence materials and a low-herbicide

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regime (LOW) involving post-emergence banded herbicide application followed by one or two

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passes with an interrow cultivator. Oat stubble in the 3- and 4-year systems was mowed to

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suppress weeds 19 to 28 days after grain harvest. Repeated cutting of alfalfa hay suppressed

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weeds in the alfalfa crop grown in the 4-year system. Details of the management of the

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experimental plots are given in Davis et al.23, Tomer and Liebman20, and Hunt et al.24

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During the 2008–2013 field seasons, as part of a related study examining contrasting

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‘technology packages’ of crop genotypes paired with particular herbicide regimes, a

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glyphosate-resistant variety of soybean was used in the CONV herbicide regime, while a non-

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glyphosate resistant soybean variety was used in the LOW herbicide regime.29 From 2014 to

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2016, the same glyphosate-resistant soybean variety was used for both herbicide treatments,

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thus avoiding confounding of crop genotype and weed management strategies.24 Glyphosate

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was used consistently in the CONV herbicide treatment, but was not used in the LOW

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herbicide treatment, during 2008–2016.

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Tillage practices varied among rotation systems. The 2-year rotation was chisel-plowed

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in the fall following corn harvest, and surface cultivated in the spring following soybean

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harvest. Similar practices were used following corn and soybean phases of the 3- and 4-year

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systems, but, additionally, soybean residue was disked before planting oat and red clover or

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oat and alfalfa, and red clover and alfalfa were moldboard plowed in the fall preceding corn

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production. The effects of these tillage practices were intertwined with those of the crop

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rotation systems in which they were used, and were part of system-level comparisons in which

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suites of farming practices varied across the different rotation systems and herbicide regimes.

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Table 1. Nutrient N and P applications via fertilizer and composted manure during 2008–2016

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averaged over all crop phases of each rotation system. Crop Rotation System 2-Year

3-Year

4-Year

(kg ha-1 yr-1) Fertilizer N

89

13

8

Fertilizer P

15

0

9

Manure N

0

46

34

Manure P

0

15

11

148 149 150

Model Calibration and Parameterization ArcSWAT is a hydrologic process model that estimates nutrient and sediment fluxes

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within a watershed. It was applied to the Marsden Farm watershed for 2008–2016, and

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generated annual estimates of total nitrogen runoff, total phosphorus runoff, sediment loading

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from erosion, and nitrate leaching loads at the scale of the watershed on a per-hectare basis

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(Figure 1).

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Because no surface water bodies exist within the Marsden Farm watershed, ArcSWAT

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was calibrated for a 31 km2 watershed using U.S. Geological Survey streamflow data

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(05451080) on the South Fork of the Iowa River near Blairsburg in Hamilton County, Iowa.

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This site is located at 42°32'37"N, 93°35'22"W, and was selected due to the similarity of soil

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types to those in the Marsden Farm watershed, duration of available streamflow data for

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comparison, and similarity of land use. Monthly and daily USGS streamflow measurements

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were obtained for 2006–2016, and the highest rated quality data were used in the calibration.

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U.S. Department of Agriculture National Agricultural Statistics Service (NASS) annual corn

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and soybean yield measurements for Hamilton County were used for comparison against

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ArcSWAT dry yield estimates (https://quickstats.nass.usda.gov).

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A 2-year corn-soybean rotation was used to drive hydrological and productivity

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dynamics for the calibration site. Daily climate data included precipitation, solar radiation,

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relative humidity, wind speed, and maximum/minimum air temperature, and were obtained

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from the National Centers for Environmental Prediction (NCEP) Climate Forecast System

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Reanalysis (CFSR) program in the format appropriate for ArcSWAT inputs.30 Precipitation

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data for calibration were derived from a climate station near the Blairsburg site. The model

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was run for four years to equilibrate to steady state conditions, and from there the model ran

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for the time period parallel to available USGS streamflow and yield data, and Daily Erosion

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Project (DEP) surface runoff estimates (https://dailyerosion.org). Criteria for evaluating model

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performance included visual assessment of hydrographs, Nash-Sutcliffe efficiency (NSE),

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percent bias (PBIAS), and coefficient of determination (R2).31 Model parameters evaluated for

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performance included average daily streamflow over a monthly time step (m3 s-1), annual dry

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corn and soybean yields (Mg ha-1), mean annual surface runoff estimates (mm), and annual

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evapotranspiration (mm). Calibration results are reported in the Supporting Information.

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Following calibration within the Hamilton County watershed, ArcSWAT was applied

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to the Marsden Farm watershed. Only site-specific parameter values changed between the two

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watersheds, including climate, soils, elevation, topography, land cover, and absence of

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subsurface tile drainage, thus reflecting characteristics specific to the Marsden Farm site.

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ArcSWAT Parameters

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Simulated nutrient transport within the watershed was driven by the hydrologic cycle

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in ArcSWAT, which disaggregated the study site into multiple sub-basins to model all

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iterations of soil types and management practices within the watershed. The Marsden Farm

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watershed was comprised of seven sub-basins, each representing a distinct topography, soil

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type, and management operation (Figure 1).

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Figure 1. Aerial view of the Marsden Farm experiment boundary shown in yellow, the

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ArcSWAT-created watershed with representative Hydrologic Response Units shown in black,

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and the simulated water flow in blue.

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The modeling unit was comprised of the land cover, soil type, and hillslope of the

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Marsden Farm, as represented by a 3-m LiDAR digital elevation model

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(https://datagateway.nrcs.usda.gov/), SSURGO soil classification

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(https://datagateway.nrcs.usda.gov/), and the 2012 NLCD cropland data set

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(https://nassgeodata.gmu.edu/CropScape/). Hydrologic Response Units (HRU) were generated

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to represent a modeling unit comprised of soil type, land cover, slope, and management

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(Figure 1). Dominant soil types represented in the Marsden Farm watershed included Canisteo

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silty clay loam (fine-loamy, mixed, superactive, calcareous, mesic Typic Endoaquolls, 0–2 %

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slope) (7.0% of watershed area), Webster silty clay loam (fine-loamy, mixed, superactive,

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mesic, Typic Endoaquolls, 0–2% slope) (21.5%), Harps clay loam (fine-loamy, mixed,

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superactive, mesic Typic Calciaquolls, 0–2% slope) (15.9%), Nicollet loam (fine-loamy,

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mixed, superactive, mesic, Typic Hapludolls, 2–5% slope) (26.5%), and Clarion loam (fine-

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loamy, mixed, superactive, mesic, Typic Hapludolls, 2–5% slope) (25.0%).32 Average slope

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for the watershed was 1.7%, and all biophysical crop characteristics were represented by the

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agricultural land cover database type.

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The model was run from 1991–2016 and included a 17-year spin-up period of generic

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agricultural row crop production to equilibrate the soil pools to steady state conditions.

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Following this, ArcSWAT simulated the rotation systems as described in the experimental

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design. Modeling scenarios included specific dates for planting, nutrient application, tillage,

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and harvest derived from experiment logs and represented all rotation system and herbicide

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regime characteristics. The ArcSWAT Land Cover/Plant Growth Database contains crop-

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specific parameters that characterize specific crop traits. In the absence of Marsden Farm-

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specific physiological crop data, we used parameter values from published literature for

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calibration. Within the field experiment, each crop phase in each rotation system and herbicide

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regime was present every year. This was replicated in the ArcSWAT modeling environment by

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simulating multiple sets of each crop phase within each rotation system and herbicide regime

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over one year across each HRU within the entire watershed. Averages of the modeling outputs

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were calculated across the staggered simulations, years, and HRUs and were expressed in per-

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hectare units.30 To reconcile the empirical data with the modeling outputs, we assumed that the

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plot outputs were representative of the average HRUs across the Marsden Farm watershed.

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Watershed scale values were expressed in per-hectare units to align with the per-hectare plot

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scale outputs.

227 228 229

Performance Metric Calculations Performance metrics for the contrasting crop rotation systems and herbicide regimes

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included annual N and P in runoff water, NO3--N in leached water, and eroded sediment yield

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per land area (ha). Agronomic performance metrics included net returns to land and

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management ($), dry corn and soybean yields (Mg ha-1), and weed biomass (kg ha-1) in corn

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and soybean crops.

234 235

Surface runoff nutrient loads were represented by total nitrogen and total phosphorus loss, calculated with the following equations:

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Total Nitrogen Runoff (kg N ha-1) = Σ(Particulate N, Dissolved N)

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Total Phosphorus Runoff (kg P ha-1) = Σ(Particulate P, Dissolved Mineral P)

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where particulate N was comprised of organic N, dissolved N was comprised of NO3--N,

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particulate P was comprised of organic P and sediment P, and dissolved mineral P was

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comprised of soluble P.33 While ammonium (NH4) is a significant contributor to dissolved N,

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ArcSWAT does not directly simulate NH4 runoff from a watershed, and it was thus excluded

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from the dissolved N content.33 Erosion losses (Mg sediment ha-1) were calculated in

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ArcSWAT using the Modified Universal Soil Loss Equation, which is driven by the following

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factors: soil erodibility (K), cover and management (C), support practices (P), slope length and

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slope angle (LS), and coarse fragment content (CFRG).34 Nitrate-N leaching was also

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simulated and was estimated in kg NO3--N ha-1.33 All simulations were run in ArcSWAT

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2012.10.3.18 through ArcGIS 10.4.1.

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Annual dry corn grain and soybean yields were measured at the plot scale and were

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present for each block within each rotation system from 2008–2016. Economic returns to land

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and management at Marsden Farm were calculated at the plot level for each rotation system

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and herbicide treatment using field operations logs for labor demands, seed and chemical

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inputs, crop yields, and year- and product-specific databases for materials costs, operations

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costs, and crop prices. Input costs included seeds, fertilizers, and herbicide products, and were

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obtained from local retailers and Iowa and Midwest-based reports. Labor, fuel, and machinery

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cost data were derived from Iowa State University Extension and Outreach publications. Costs

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associated with manure application in the 3- and 4-year rotation systems assumed that manure

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was produced by on-farm or neighboring-farm livestock with the costs of labor and machinery

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required for application; no cost was assigned to the manure itself, which was assumed to be a

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waste product from the livestock enterprise. This approach is appropriate with the caveat that

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if crop farmers purchased manure, net returns would be reduced.26 Iowa market year crop

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prices were obtained from the USDA National Agricultural Statistics Service, and gross

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revenue was calculated as the product of crop price and yield. Costs and revenue from

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mortgage, lease, and government payments were excluded from the study. Net returns to land

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and management were calculated as the difference between gross returns and non-land and

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non-marketing costs. Calculations of net returns to land and management are described in

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detail in Davis et al.23, Hunt et al.24, and in the Supporting Information.

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Data were analyzed with linear mixed effects models where crop rotation system,

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herbicide regime, and the interaction between them were treated as fixed effects and the

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significance of F values was assessed using α = 0.05. For metrics that varied among replicate

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blocks (e.g., net returns, corn and soybean yields, and weed biomass), we included both year

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and block in the models as random effects. For response variables that did not vary among

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replicate blocks (e.g., total N runoff ha-1, total P runoff ha-1, and eroded sediment yield ha-1),

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only year was included as a random factor in the models. To meet assumptions of

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homoscedasticity, phosphorus runoff loads per hectare and nitrogen loads per hectare were

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natural log transformed before analysis. Following the mixed effects modeling, Tukey’s HSD

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multiple comparison tests (α = 0.05) were applied for pairwise comparisons of means. The

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eroded sediment yield response variable did not meet ANOVA assumptions of

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homoscedasticity, so a Welch’s Test for equal means was conducted, followed by pairwise

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means comparisons using the nonparametric Wilcoxon Method, where rotation × herbicide

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treatment was treated as a single fixed effect. All statistical analyses were executed using JMP

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Pro 13 software (JMP Software, SAS Institute, Inc.).

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Results

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Agronomic Performance

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Table 2. Agronomic performance metrics as affected by contrasting rotation systems and herbicide regimes. Means and their standard

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errors are shown for raw data. Parametric linear mixed effects analyses were performed on untransformed data for annual corn yields,

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soybean yields, and annual net returns to land and management, and on ln-transformed data for weed biomass in corn and soybean.

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Within columns, means followed by the same letter are not significantly different, as determined by Tukey’s HSD test (α = 0.05). Annual Corn Yields

Annual Soybean Yields

Net Returns

Weed Biomass in Corn & Soybean

Rotationa

Herbicide

(Mg ha-1)

(Mg ha-1)

($ ha-1)

(kg ha-1)

2-Year

CONV

10.2 (0.3)

2.8 (0.2)

833 (71)

9.7 (2.6)

LOW

10.1 (0.4)

2.5 (0.2)

809 (72)

26.4 (6.5)

CONV

10.5 (0.4)

3.2 (0.2)

863 (57)

14.4 (6.7)

LOW

10.5 (0.4)

3.1 (0.1)

883 (59)

94.2 (29.0)

CONV

10.6 (0.3)

3.3 (0.2)

871 (60)

7.7 (2.4)

LOW

10.6 (0.3)

3.3 (0.1)

893 (61)

18.9 (4.4)

3-Year

4-Year

Main Effect: Rotationa 2-Year

Statistical Results 10.1 (0.2)

b

2.6 (0.1)

b

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18.1 (6.5)

b

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3-Year

10.5 (0.3)

a

3.2 (0.1)

a

873 (81)

69.4 (31.9)

a

4-Year

10.6 (0.2)

a

3.3 (0.1)

a

880 (86)

20.7 (6.4)

b

Main Effect: Statistical Results Herbicidea CONV

10.4 (0.2)

3.1 (0.1)

a

854 (72)

13.4 (3.9)

b

LOW

10.4 (0.2)

2.9 (0.1)

b

862 (73)

58.7 (21.6)

a

Source of Variationb

Mixed Effect Modeling Results

ROT

**

***

NS

**

HERB

NS

*

NS

*

ROT × HERB

NS

NS

NS

NS

288 289

aANOVA

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b Significance

results. is described as follows: NS, p > 0.05, and * p < 0.05, ** p < 0.01, *** p < 0.001.

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Rotation system but not herbicide regime had a significant effect on dry corn yields,

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with the 3- and 4-year systems producing 4.5% higher yields than the 2-year system (Table 2).

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Corn yields at the Marsden Farm site were slightly greater than yields reported for Boone

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County for 2008–2016 (9.3 Mg ha-1). Rotation system and herbicide regime each had a

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significant effect on soybean yields, with the more diverse systems having 23–27% greater

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yields than the corn-soybean rotation, and CONV soybeans having 6% greater yields than

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LOW soybeans (Table 2). Observed Marsden soybean yields were similar to reported Boone

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County averages at 2.9 Mg ha-1 for the same time period (https://quickstats.nass.usda.gov).

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Because differences in soybean yields between herbicide regimes may have been

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related to differences in soybean cultivar identity (cultivars were confounded with herbicide

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regime in 2008–2013, though not in 2014–2016), we compared soybean yield among three

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categories: the conventional herbicide regime with a soybean cultivar genetically engineered

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for glyphosate tolerance (ConvGE); the low herbicide regime with the glyphosate-tolerant

305

cultivar (LowGE); and the low herbicide regime used with a non-genetically engineered

306

cultivar not tolerant of glyphosate (LowNonGE). ConvGE yields did not differ from LowGE

307

yields, whereas ConvGE yields were 12% higher than those from LowNonGE (Table 3).

308 309

Table 3. Annual dry soybean yields in contrasting genotype-herbicide regimes averaged over

310

rotation systems. ConvGE: conventional herbicide regime with glyphosate tolerant soybean

311

cultivar; LowGE: low herbicide regime with glyphosate tolerant cultivar; LowNonGE: low

312

herbicide regime with non-genetically engineered cultivar not tolerant of glyphosate. Genoytype-Herbicide Regime

Soybean Yields (Mg ha-1)

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ConvGE

3.18 (0.07)

a

LowGE

3.10 (0.05)

ab

LowNonGE

2.78 (0.08)

b

313 314 315 316

Net returns to land and management were unaffected by rotation system or herbicide regime, with a mean value of $859 ha-1 (Table 2). Rotation and herbicide regime each had a significant effect on weed biomass in corn

317

and soybean crops (Table 2), where greater weed biomass was observed in the LOW herbicide

318

regime, and in the 3-year rotation system. The 2- and 4-year systems were comparable in terms

319

of weed biomass in corn and soybean crops, with a mean weed biomass of 19 kg ha-1. Across

320

all rotation systems, average corn and soybean weed biomass was 36 kg ha-1 (Table 2). As a

321

proportion of mean dry yields for the different crops, weed biomass ranged from 0.3% in corn,

322

1.1% in established alfalfa, 1.4% in soybean, and 5.1% in oat, averaged across all rotation

323

systems and herbicide regimes.

324 325 326

Marsden Farm Simulation Results Dry yields of corn, soybean, oat, and alfalfa simulated by ArcSWAT were compared

327

against measured Marsden Farm yields and NASS yield measurements for 2008–2016. All

328

simulated crop yields were within 16% of reported Marsden Farm yields, and within 22% of

329

reported Boone County yields (Figure 2).

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330 331

Figure 2. Mean annual dry yields as simulated by ArcSWAT and measured at the Marsden

332

Farm experiment and commercial farms in Boone County, IA, for 2008–2016.

333

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Table 4. Soil sediment yields, total N runoff, total P runoff, and nitrate-N leaching losses as affected by contrasting rotation systems

335

and herbicide regimes. Means and their standard errors are shown for raw data. Parametric linear mixed effects analyses were

336

performed on untransformed data for NO3--N, and on ln-transformed data for total N and P losses in runoff. For sediment yields, data

337

were analyzed using the nonparametric Welch’s test. For soil sediment yields, means followed by the same letter are not significantly

338

different, as determined by pairwise means comparisons using the Wilcoxon method. For all other metrics, within columns means

339

followed by the same letter are not significantly different, as determined by Tukey’s HSD test (α = 0.05). Soil Sediment Yields

Total N Runoff

Total P Runoff

NO3--N Leached

(kg N ha-1)

(kg P ha-1)

(kg NO3--N ha-1)

Rotation

Herbicide

(Mg ha-1)

2-Year

CONV

2.6 (0.5)

a

10.0 (1.8)

2.3 (0.5)

20 (7)

LOW

2.6 (0.5)

a

10.0 (1.8)

2.2 (0.4)

20 (7)

CONV

1.7 (0.3)

ab

6.5 (1.0)

1.6 (0.2)

22 (6)

LOW

1.6 (0.3)

ab

6.3 (1.0)

1.4 (0.2)

22 (6)

CONV

1.0 (0.2)

b

6.2 (0.9)

1.6 (0.2)

15 (5)

LOW

1.0 (0.2)

b

6.1 (0.9)

1.5 (0.2)

15 (4)

3-Year

4-Year

Main Effect: Rotationa 2-Year

Statistical Results 2.6 (0.3)

a

10.0 (1.2)

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a

2.3 (0.3)

a

20 (5)

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3-Year

1.6 (0.2)

ab

6.4 (0.7)

b

1.5 (0.2)

b

22 (4)

4-Year

1.0 (0.1)

b

6.1 (0.6)

b

1.6 (0.2)

b

15 (3)

Source of Variationb

Mixed Effect Modeling Results

ROT

***

**

**

NS

HERB

NS

NS

NS

NS

*

NS

NS

NS

ROT × HERB 340 341

a ANOVA

342

b Significance

results. is described as follows: NS, p > 0.05, and * p < 0.05, ** p < 0.01, *** p < 0.001.

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Eroded Sediment Yield Because assumptions of homoscedasticity were not met for eroded sediment yield,

345

possible differences among rotation systems and herbicide regimes were evaluated using the

346

Welch’s Test, where rotation × herbicide treatment was treated as a fixed effect with six levels.

347

This was followed by a non-parametric comparison of means via the Wilcoxon method. There

348

was no significant effect of herbicide regime alone (p > 0.05), but rotation system had a

349

significant effect on reducing sediment yields and increasing corn and soybean yields at the

350

same time (Table 2). The addition of oat and alfalfa to the 2-year rotation resulted in a 60%

351

reduction (p < 0.05) in sediment loading on a per-hectare basis (Table 4).

352 353 354

Nitrogen and Phosphorus Runoff Estimates Rotation system alone had a significant (p < 0.05) effect on total nitrogen runoff on a

355

per-hectare basis (Table 4). On a per-hectare basis, adding at least one additional crop phase to

356

the corn and soybean system resulted in 36–39% reductions in nitrogen runoff (p < 0.05)

357

(Table 4).

358

Increasing rotation diversity from a 2-year to a 3-year system resulted in a 35%

359

reduction in total phosphorus runoff per-hectare, while adding a fourth year to the 3-year

360

system to make it a 4-year system reduced runoff by 30% compared to the 2-year system

361

(Table 4).

362

Nitrate leaching

363 364

We observed no significant effect of rotation system or herbicide regime on nitrate-N leaching (Table 4).

365 366

Discussion

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367

Rotation system and herbicide regime were significant drivers of the major agronomic

368

functions of crop yield, weed suppression, and net returns to land and management. Rotation

369

was a significant and positive driver of corn and soybean yields, with significant increases

370

observed as at least one crop phase was added to the 2-year rotation. Increasing rotation

371

diversity increased corn yields in the present experiment, perhaps due to enhanced nitrogen

372

fertility from legumes (i.e., red clover and alfalfa)35,36 and fertility-related and non-fertility-

373

related stimulatory effects of manure.37 Our results are consistent with those of other studies,

374

which have shown that alternative cropping systems that include inter- or double-cropping or

375

use of green manure can improve crop performance due to increases in soil fertility, enhanced

376

soil structure, and disruption of crop diseases and pests, compared to shorter rotations and

377

monocultures.14

378

Higher soybean yields in the longer rotations can be attributed to lower incidence and

379

decreased severity of soybean sudden death syndrome (SDS), a soil-borne disease caused by

380

the fungus Fusarium virguliforme.38 Decreases in soybean yields between the CONV and

381

LOW herbicide regime can be attributed in part to the confounding effect of herbicide regime

382

and soybean genotype prior to 2014. During 2008–2013, a non-genetically engineered soybean

383

genotype with greater susceptibility to SDS was used with the low herbicide regime, whereas a

384

cultivar genetically engineered for glyphosate tolerance, which also had greater resistance to

385

SDS, was used in the conventional herbicide regime. From 2014–2016, the same GE soybean

386

genotype was used in both the conventional and low herbicide treatments, and there were no

387

significant differences in yield between them.

388

We found no significant effect of rotation system or herbicide regime on net returns to

389

land and management, revealing potential for increased rotation diversity to reduce impacts to

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390

surface water quality in agricultural watersheds while maintaining profitability. These results

391

are consistent with those obtained from a prior study at the Marsden Farm site in which

392

economic returns were maintained among a 2-year corn-soybean rotation managed with

393

conventional herbicide inputs, and 3-year and 4-year rotations with small grains, red clover,

394

and alfalfa added to corn and soybean and managed with low herbicide inputs.23 While annual

395

labor costs increased with rotation diversity (Supporting Information), the allocation of labor

396

requirements varied throughout the growing season. The more diverse cropping systems

397

require increased labor during the summer for small grain and hay harvests, and in the fall

398

after corn and soybean harvests for manure application and tillage operations. The timing of

399

the labor requirements for the 3- and 4-year systems is unlikely to conflict with corn and

400

soybean production, whose labor requirements peak during planting (early spring) and

401

harvesting (late fall). Exceptions would be for the first cut of alfalfa and for cultivations in the

402

low herbicide regime.26 Increasing crop diversity while maintaining total land area constant

403

would mean lower labor requirements for a given crop. Moreover, if a farm operator were

404

unable to provide all the necessary labor him/herself, additional off-farm labor might be hired

405

or custom harvesting services might be contracted.

406

We observed significant effects of rotation system and herbicide regime on weed

407

biomass in corn and soybean crops. The greatest amount of weed biomass was measured in the

408

LOW treatments, largely driven by high weed biomass in the 3-year LOW system in 2015. In

409

contrast, weed biomass in the 4-year system was equivalent to that in the 2-year system. Over

410

all rotation systems and herbicide regimes, the percentage of weed biomass relative to

411

harvested crop mass was at most 5.1% in the oat phase, and at the minimum, less than 1% in

412

corn phases. Incorporation of non-cash cover crops can facilitate weed suppression by

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413

interrupting the life cycle of certain weed species, and the early spring planting of cash crops

414

such as oat can facilitate competition against warm-season weeds commonly encountered in

415

corn and soybean.39 In addition to reducing herbicide requirements overall, crop diversification

416

has also been effective in reducing threats from herbicide resistant weeds in the U.S. Northern

417

Plains and Canadian Prairie regions.25

418

We found significant effects of increased cropping system diversity on nutrient and

419

eroded sediment runoff. While we did not observe significant effects of rotation diversity or

420

herbicide regime on NO3--N leaching, our simulated leaching patterns were reflective of those

421

measured in empirical studies, in which the 3-year rotation had the highest concentrations of

422

NO3--N in drainage water, followed by the 2- and then the 4-year system.20 Our nutrient

423

leaching estimates were within range of values found in the literature for Iowa agricultural

424

systems (13.4–55.8 kg NO3--N ha-1).40–42 Similarly, our estimated nitrogen runoff values were

425

within range of reported values (3.0–39.6 kg N ha-1), as were our simulated phosphorus runoff

426

values (0.01–3 kg P ha-1).40–42

427

Increasing crop rotation diversity increases system complexity, which can deliver a

428

host of ecosystem services that support the agricultural system, including pest suppression,

429

improved water quality, and increased sediment and nutrient retention.4 The substitution of

430

synthetic fertilizers with manure can also lead to enhanced environmental performance and

431

lower operation and energy costs over the long term, by reducing life cycle impacts associated

432

with the Haber-Bosch process.36,43,47 On a landscape scale, the use of manure alleviates the

433

burden of a waste product on one farm and turns it into an asset on another, providing

434

opportunities for profit for a diverse array of farming operations.26

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Oat, red clover, and alfalfa residues can have beneficial effects on cropping system

436

performance, including biological nitrogen fixation and storage for slower release to crops in

437

coming years, and enhanced microbial community activity32, which facilitates nutrient cycling

438

and enhances the biological and physical soil characteristics.44 A substantial amount of the

439

nitrogen fixed from the atmosphere by leguminous forage crops such as red clover and alfalfa

440

is returned to the soil pool.45 Increasing crop residue and biomass cover can also enhance soil

441

water storage, reduce soil water evaporative loss, and soil erosion by wind and rain. The

442

addition of crops with extensive and deep rooting systems, such as alfalfa, also delivers

443

physical soil structure enhancements to keep arable soil on the field.44

444

By fine-tuning soil nutrient management and use of alternative nutrient sources, we

445

observed significant reductions in sediment and nutrient loads. Not only does this ensure that

446

crop nutrient needs were met, but impacts on surface water bodies were also reduced. The

447

addition of an oat-leguminous crop mixture delivers many benefits to a cropping system,

448

including maintenance of soil structure through an extensive rooting system. The substitution

449

of synthetic nitrogen inputs by biological nutrient sources such as manure and biomass from

450

leguminous forage crops can also contribute to reduced soil carbon loss over the long term.27,46

451

The incorporation of additional crop phases to the corn and soybean rotation resulted in

452

significant reductions in nutrient discharge and sediment erosion, while increasing corn and

453

soybean yields and sustaining net returns. At the same time, we observed no significant effect

454

of herbicide regime on any runoff impacts, indicating that an alternative herbicide regime can

455

significantly reduce potential toxicity loading with low risk of exacerbating nutrient or

456

sediment runoff problems on fields with low slope and soils with low erodibility potential.24

457

Overall, this study indicates that partial substitution of synthetic fertilizer inputs with

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458

composted manure and crop residues could be an important strategy to reduce nutrient and

459

sediment losses to water bodies, while maintaining major agronomic functions of productivity

460

and profitability. Extended crop rotation systems and integrated crop-livestock systems should

461

be considered as components for improved nutrient management and soil conservation

462

strategies in the U.S. Midwest and other intensively farmed regions.

463 464

Acknowledgements

465

We express our sincere thanks to Matthew Woods, Ann Johanns, Philip Gassman, Brent

466

Dalzell, James Almendinger, Peter Vadas, and Jaehak Jeong for assistance with data collection

467

and analysis. This research was supported by research grants from the U.S. Department of

468

Agriculture's Agriculture and Food Research Initiative (2014-67013-21712), the Leopold

469

Center for Sustainable Agriculture (2014-XP01), and the U.S. Department of Agriculture

470

Hatch Project (MIN-12-083).

471 472

Supporting Information Available

473

Detailed information on ArcSWAT calibration and economic data as described in the text.

474

This information is available free of charge via the Internet at http://pubs.acs.org.

475 476

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ACS Paragon Plus Environment

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